Loschmidt Laboratories, Department of Experimental Biology and RECETOX, Faculty of Science, Masaryk University, Kamenice 5/A13, 625 00 Brno, Czech Republic; International Clinical Research Center, St. Anne's University Hospital Brno, Pekarska 53, 656 91 Brno, Czech Republic.
Loschmidt Laboratories, Department of Experimental Biology and RECETOX, Faculty of Science, Masaryk University, Kamenice 5/A13, 625 00 Brno, Czech Republic; International Clinical Research Center, St. Anne's University Hospital Brno, Pekarska 53, 656 91 Brno, Czech Republic; IT4Innovations Centre of Excellence, Faculty of Information Technology, Brno University of Technology, 61266 Brno, Czech Republic.
Biotechnol Adv. 2021 Mar-Apr;47:107696. doi: 10.1016/j.biotechadv.2021.107696. Epub 2021 Jan 26.
Enzymes are the natural catalysts that execute biochemical reactions upholding life. Their natural effectiveness has been fine-tuned as a result of millions of years of natural evolution. Such catalytic effectiveness has prompted the use of biocatalysts from multiple sources on different applications, including the industrial production of goods (food and beverages, detergents, textile, and pharmaceutics), environmental protection, and biomedical applications. Natural enzymes often need to be improved by protein engineering to optimize their function in non-native environments. Recent technological advances have greatly facilitated this process by providing the experimental approaches of directed evolution or by enabling computer-assisted applications. Directed evolution mimics the natural selection process in a highly accelerated fashion at the expense of arduous laboratory work and economic resources. Theoretical methods provide predictions and represent an attractive complement to such experiments by waiving their inherent costs. Computational techniques can be used to engineer enzymatic reactivity, substrate specificity and ligand binding, access pathways and ligand transport, and global properties like protein stability, solubility, and flexibility. Theoretical approaches can also identify hotspots on the protein sequence for mutagenesis and predict suitable alternatives for selected positions with expected outcomes. This review covers the latest advances in computational methods for enzyme engineering and presents many successful case studies.
酶是执行维持生命的生化反应的天然催化剂。它们的自然效力经过数百万年的自然进化已经得到了微调。这种催化效率促使人们在不同的应用中使用来自多种来源的生物催化剂,包括商品(食品和饮料、洗涤剂、纺织品和制药)的工业生产、环境保护和生物医学应用。天然酶通常需要通过蛋白质工程进行改进,以优化其在非天然环境中的功能。最近的技术进步通过提供定向进化的实验方法或通过启用计算机辅助应用,极大地促进了这一过程。定向进化以牺牲艰苦的实验室工作和经济资源为代价,以极高的速度模拟自然选择过程。理论方法提供预测,并通过免除其固有成本,成为此类实验的有吸引力的补充。计算技术可用于设计酶的反应性、底物特异性和配体结合、进入途径和配体运输以及蛋白质稳定性、溶解度和灵活性等全局性质。理论方法还可以确定蛋白质序列上的热点用于诱变,并预测选定位置的预期结果的合适替代物。这篇综述涵盖了用于酶工程的计算方法的最新进展,并介绍了许多成功的案例研究。